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Virtual screening for cytochromes p450: successes of machine learning filters.

机译:虚拟筛选细胞色素p450:机器学习过滤器的成功。

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摘要

Cytochromes P450 (CYPs) are crucial targets when predicting the ADME properties (absorption, distribution, metabolism, and excretion) of drugs in development. Particularly, CYPs mediated drug-drug interactions are responsible for major failures in the drug design process. Accurate and robust screening filters are thus needed to predict interactions of potent compounds with CYPs as early as possible in the process. In recent years, more and more 3D structures of various CYP isoforms have been solved, opening the gate of accurate structure-based studies of interactions. Nevertheless, the ligand-based approach still remains popular. This success can be explained by the growing number of available data and the satisfying performances of existing machine learning (ML) methods. The aim of this contribution is to give an overview of the recent achievements in ML applications to CYP datasets. Particularly, popular methods such as support vector machine, decision trees, artificial neural networks, k-nearest neighbors, and partial least squares will be compared as well as the quality of the datasets and the descriptors used. Consensus of different methods will also be discussed. Often reaching 90% of accuracy, the models will be analyzed to highlight the key descriptors permitting the good prediction of CYPs binding.
机译:当预测正在开发的药物的ADME特性(吸收,分布,代谢和排泄)时,细胞色素P450(CYP)是至关重要的目标。特别是,CYP介导的药物-药物相互作用是药物设计过程中的主要失败原因。因此,需要准确而强大的筛选过滤器,以尽可能早地预测有效化合物与CYP的相互作用。近年来,已解决了越来越多的各种CYP亚型的3D结构,为基于相互作用的精确结构研究打开了大门。然而,基于配体的方法仍然流行。可以通过可用数据数量的增加和现有机器学习(ML)方法的令人满意的性能来解释这种成功。此贡献的目的是概述ML在CYP数据集应用中的最新成就。特别是,将比较流行的方法,例如支持向量机,决策树,人工神经网络,k最近邻和偏最小二乘以及数据集和所使用描述符的质量。还将讨论不同方法的共识。通常会达到90%的准确性,将对模型进行分析以突出显示允许对CYP结合进行良好预测的关键描述符。

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